Literature DB >> 21173705

Combined evaluation of frequency doubling technology perimetry and scanning laser ophthalmoscopy for glaucoma detection using automated classification.

Folkert K Horn1, Robert Lämmer, Christian Y Mardin, Anselm G Jünemann, Georg Michelson, Berthold Lausen, Werner Adler.   

Abstract

PURPOSE: To develop a diagnostic setup with classification rules for combined analysis of morphology [Heidelberg Retina Tomograph (HRT)] and function [frequency doubling technology (FDT) perimetry] measurements.
METHODS: We used 2 independent case-control studies from the Erlangen eye department as learning and test data for automated classification using random forests. One eye of 334 open angle glaucoma patients and 254 controls entered the study. All individuals underwent HRT scanning tomography of the optic disc, FDT screening, conventional perimetry, and evaluation of fundus photographs. Random forests were learned on individuals of the Erlangen glaucoma registry (102 preperimetric patients, 130 perimetric patients, 161 controls). The classification performances of random forests and built-in classifiers were examined by receiver operator characteristic analysis on an independent second cohort of individuals (47 preperimetric patients, 55 perimetric patients, 93 controls).
RESULTS: HRT measurements had a higher diagnostic power for early glaucomas and FDT perimetry for glaucoma patients with visual field loss. A combination of all parameters using automated classification was superior to single tests in comparison to the diagnostic instrument with the higher diagnostic power in the respective group. Highest sensitivities at a fixed specificity (95%) in the patients of the present test population were: HRT=32%, FDT=19%, combined analysis=47% in preperimetric patients and HRT=76%, FDT=89%, combined analysis=96% in perimetric patients.
CONCLUSIONS: The feasibility of machine learning for medical diagnostic assistance could be demonstrated in patients from 2 independent study populations. A predictive model using automated classification is able to combine the advantages of morphology and function, resulting in a higher diagnostic power for glaucoma detection.

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Year:  2012        PMID: 21173705     DOI: 10.1097/IJG.0b013e3182027766

Source DB:  PubMed          Journal:  J Glaucoma        ISSN: 1057-0829            Impact factor:   2.503


  7 in total

1.  Relationship between short-wavelength automatic perimetry and Heidelberg retina tomograph parameters in eyes with ocular hypertension.

Authors:  Christos Pitsas; Dimitrios Papaconstantinou; Ilias Georgalas; Ioannis Halkiadakis
Journal:  Int J Ophthalmol       Date:  2015-10-18       Impact factor: 1.779

2.  Visual evoked potential and psychophysical contrast thresholds in glaucoma.

Authors:  Siti Nurliyana Abdullah; Gordon F Sanderson; Andrew C James; Ted Maddess
Journal:  Doc Ophthalmol       Date:  2014-03-11       Impact factor: 2.379

3.  Improving glaucoma detection using spatially correspondent clusters of damage and by combining standard automated perimetry and optical coherence tomography.

Authors:  Ali S Raza; Xian Zhang; Carlos G V De Moraes; Charles A Reisman; Jeffrey M Liebmann; Robert Ritch; Donald C Hood
Journal:  Invest Ophthalmol Vis Sci       Date:  2014-01-29       Impact factor: 4.799

4.  A Data Mining Framework for Glaucoma Decision Support Based on Optic Nerve Image Analysis Using Machine Learning Methods.

Authors:  Syed S R Abidi; Patrice C Roy; Muhammad S Shah; Jin Yu; Sanjun Yan
Journal:  J Healthc Inform Res       Date:  2018-06-20

5.  Predictive Modeling of Long-Term Glaucoma Progression Based on Initial Ophthalmic Data and Optic Nerve Head Characteristics.

Authors:  Eun Ji Lee; Tae-Woo Kim; Jeong-Ah Kim; Seung Hyen Lee; Hyunjoong Kim
Journal:  Transl Vis Sci Technol       Date:  2022-10-03       Impact factor: 3.048

Review 6.  [Glaucoma-a common disease].

Authors:  I Oberacher-Velten; E Hoffmann; H Helbig
Journal:  Ophthalmologe       Date:  2016-09       Impact factor: 1.059

7.  Glaucoma Diagnostic Accuracy of Machine Learning Classifiers Using Retinal Nerve Fiber Layer and Optic Nerve Data from SD-OCT.

Authors:  Kleyton Arlindo Barella; Vital Paulino Costa; Vanessa Gonçalves Vidotti; Fabrício Reis Silva; Marcelo Dias; Edson Satoshi Gomi
Journal:  J Ophthalmol       Date:  2013-11-28       Impact factor: 1.909

  7 in total

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